请作为心内科研究生导师,检查一下manuscript的result部分表达的逻辑和内容是否符合学术期...
创建于:2025年10月30日
创建于:2025年10月30日
下面以心内科研究生导师视角,对你稿件的 Results(结果)部分及相关图表/补充材料的引用进行系统性审阅与校正建议。所有问题与修改点均基于你上传的主文稿与补充材料逐条核对而来。(manuscript.docx) (supplementary files.docx)
BAR 三分位分组区间不连贯
图 2 的题名与内容不一致
3.3 节内容重复
小节编号冲突
统计方法细节在文内不一致(MICE 次数)
缩写不统一(IMV/IVW)
中英文混排与不确定语气
单位/精度与术语
补充材料编号错配
图 5、图 6 在正文被提及但主文中无确切图题与内容
明显的文字/排版差错
图表信息完整性
| 元素 | 正文首次出现位置 | 当前标题/说明 | 主要问题 | 建议处理 |
|---|---|---|---|---|
| Figure 1 | 3.1 与方法“Participants”均有提及 | 纳排流程图 | 正常(建议只在结果引用一次) | 保留于 3.1,方法处可不必引用图号。(manuscript.docx) |
| Table 1 | 3.2 基线特征 | BAR 三分位的基线差异 | 与正文文字不完全一致(体温显著但正文写不显著;IMV 记作 IVW);单位/精度需统一 | 纠正文案与缩写;标准化单位与小数。(manuscript.docx) |
| Figure 2 | 3.3 主要结局(30 天)及 3.4 延伸随访 | 题为 Cox,但注释与正文为 KM 曲线(A–D) | 题名-内容不匹配;图注称“numbers at risk”需确保呈现 | 更名为 KM;若有 Cox 森林图,另立新图或转补充。(manuscript.docx) |
| Table 2 | 3.3/3.4 | 多时间点 Cox 模型 | 个别拼写/格式错误;“Per 1 Unit increase”需加单位;一处“f”残留 | 统一为 “Per 1 mg·g⁻¹ increase”;全表格式与小数位统一。(manuscript.docx) |
| Figure 3 | 3.3/3.4 | RCS(A–D:四时间点) | 逻辑与叙述一致 | 建议在图注中注明节段数与结点位置(knots)。(manuscript.docx) |
| Figure 4 | 3.3/3.6 | 30 天亚组森林图 | 叙述与图号一致 | 在图注写明“调整同 Model 3;展示 T3 vs T1”并报告 P_interaction。(manuscript.docx) |
| Supp. Fig. 1–3 | 3.4/3.6 | 60/120/365 天亚组 | 编号与描述匹配 | 保持;图注与主文术语一致。(supplementary files.docx) |
| Supp. Fig. 4–6 | 机器学习段 | DCA、PR、SHAP | 与正文存在“Figure 5/6”占位冲突 | 统一为补充图;主文仅概述要点并给出“见 Supp. Figures 4–6”。(manuscript.docx) (supplementary files.docx) |
| Supp. Tables | 多处 | S1–S4 已存在;Boruta 为 S6 | 编号与正文错配(S5/S6);S1 内容与正文声称不符 | 统一补充表编号与内容描述,正文相应修订。(supplementary files.docx) |
3.1 Study population(修订建议稿)
We identified 3,192 adult ICU admissions with cardiogenic shock in MIMIC‑IV. After excluding ICU stay <24 h (n=190), missing height or weight (n=837), and missing BUN or albumin within 24 h (n=1,154), 1,011 unique patients remained for analysis (Figure 1). Patients were stratified into tertiles of BAR using cohort‑specific cut‑points (T1: ≤7 mg·g⁻¹; T2: >7–12 mg·g⁻¹; T3: >12 mg·g⁻¹; n=337 in each). During 30‑day follow‑up from ICU admission, 377/1,011 (37.3%) deaths occurred (primary outcome). (请用实际分位点替换示例切点) (manuscript.docx)
3.2 Baseline characteristics(修订建议稿)
Across ascending BAR tertiles, patients were older and more often male; severity scores increased (SOFA median 7→9; SAPS II 39→51; both P<0.001). AKI/CKD/sepsis/DM/AF were more prevalent in higher tertiles, whereas hypertension and malignant arrhythmia were less frequent in T1. Laboratory trends included higher BUN/creatinine/potassium/INR/lactate and lower albumin/hemoglobin/hematocrit/platelets/sodium/PaO₂ (all P<0.05). CRRT use rose 14%→36% (P<0.001), whereas ACEI/ARB/statins decreased; IMV and β‑blocker usage did not differ significantly (P>0.05). Table 1 provides full distributions. (删除中文与疑问语气,确保与表 1 P 值一致) (manuscript.docx)
3.3 Primary outcome: 30‑day mortality(修订建议稿)
Kaplan–Meier curves by BAR tertiles showed clear separation (log‑rank P<0.001; Figure 2A). In Cox models, BAR remained independently associated with 30‑day mortality: per 1 mg·g⁻¹, HR 1.026 (95% CI 1.011–1.041; P=0.001); T3 vs T1, HR 1.803 (1.262–2.576; P=0.001), with a significant P for trend=0.001 (Table 2). Restricted cubic splines indicated an approximately linear dose–response without an evident threshold (Figure 3A). Subgroup findings were directionally consistent with no significant interactions (Figure 4). (manuscript.docx)
3.4 Secondary outcomes: 60/120/365‑day mortality(修订建议稿)
Associations were stable at 60/120/365 days, both per‑unit and tertile contrasts (all P≤0.001), with sustained KM curve separation (Figure 2B–D), near‑linear RCS patterns (Figure 3B–D), and no effect modification (Supplementary Figures S1–S3). Table 2 summarizes adjusted estimates. (manuscript.docx) (supplementary files.docx)
3.5 Prespecified subgroups and interactions(修订建议稿)
The T3 vs T1 association exceeded unity across demographics, comorbidities, and clinical strata with P_interaction >0.05 throughout (Figure 4; Supplementary Figures S1–S3). (manuscript.docx) (supplementary files.docx)
3.6 Sensitivity analyses and diagnostics(修订建议稿)
Findings were consistent across complete‑case analyses, alternative BAR codings, and trimming strategies; proportional‑hazards and functional‑form checks were satisfactory. Detailed distributions, missing‑data patterns, and univariable associations are shown in Supplementary Tables S1–S4. (统一 MICE 次数;如有需要在补充列出 per‑5 单位 HR 与 CI) (manuscript.docx) (supplementary files.docx)
3.7 Exploratory machine‑learning analysis(修订建议稿)
Eight algorithms yielded favorable PR curves and DCA, and SHAP ranked BAR among top contributors; these internally validated results support, but do not replace, regression findings (Supplementary Figures S4–S6; Supplementary Table S6 for Boruta). (若留主文图,请改号并给出完整图题/图注;否则仅在此概述并指向补充) (manuscript.docx) (supplementary files.docx)
如需,我可以把你“结果”整节按期刊书写规范直接重排成定稿版(含统一编号、图题/表题、标准化统计书写与一次性去重),并给出一套“作者回应审稿人”模板段落,便于后续对审修改。
参照顶级期刊的临床研究的习惯,翻译润色discussion部分,并提出修改意见,可以添加缺少的部分,以使分析更加完整,必要时调整表达顺序以保持逻辑清晰,
下面我将以顶级临床期刊(如 NEJM/JAMA/Circulation)常见写法,先给出一版可直接替换到稿件中的英文 Discussion(已按高分期刊逻辑重排并补齐常缺要素);随后附上逐条修改建议与检查清单,指出还需要在正文或补充材料中补强/统一的细节,便于你一键对照完善。
说明:以下论述严格基于你稿件的结果、图表与补充材料,不引入外部研究结论;涉及具体效应量、亚组与方法细则处均以你文稿与补充表/图为据。(manuscript.docx) (supplementary files.docx)
In this large retrospective cohort of 1,011 adults with cardiogenic shock (CS) drawn from MIMIC‑IV, we found that the blood urea nitrogen‑to‑albumin ratio (BAR) measured within the first 24 hours of ICU admission was independently and positively associated with all‑cause mortality at 30, 60, 120, and 365 days. The association was evident when BAR was modeled continuously and by tertiles, persisted across hierarchical adjustment, and appeared approximately linear on restricted cubic splines without an obvious threshold. At 30 days, each +1 mg·g⁻¹ higher BAR corresponded to a 2.6% higher hazard of death (adjusted HR 1.026, 95% CI 1.011–1.041), and the highest tertile carried an ~80% higher adjusted risk versus the lowest tertile; patterns were directionally consistent at extended horizons. Prespecified subgroups showed no evidence of effect modification. (manuscript.docx)
BAR integrates information from two routinely available analytes that capture complementary aspects of CS pathophysiology. BUN reflects prerenal azotemia, neurohormonal activation, and catabolic drive, whereas albumin—a negative acute‑phase reactant—tracks systemic inflammation, capillary leak, and nutritional reserve. A higher BAR therefore plausibly indexes the combined burden of hypoperfusion‑renal handling abnormalities and systemic inflammatory‑metabolic stress that characterizes CS. Notably, BAR retained prognostic value after comprehensive adjustment for conventional risk markers (e.g., SOFA, SAPS II, lactate, creatinine, INR) and remained nearly linear across the observed range, suggesting that risk accrues progressively with rising BAR rather than being confined to an extreme tail. The non‑significant difference between the middle and lowest tertiles, in the context of a significant trend, is compatible with a graded risk pattern in which clinically meaningful excess risk concentrates at higher BAR levels. (manuscript.docx)
Because BUN and albumin are inexpensive and universally measured, BAR can be incorporated at the bedside on day 1 to complement established scores for early risk stratification and triage. Two practical implications follow. First, reporting absolute risks by tertile (e.g., Kaplan–Meier cumulative mortality at 30/60/120/365 days) would facilitate shared decision‑making and resource allocation (e.g., escalation thresholds for monitoring, hemodynamic reassessment, or renal support). Second, rather than adopting the current cohort‑specific tertile cut‑points as clinical thresholds, future work should define transportable decision thresholds linked to absolute risk and net benefit, preferably through external validation and decision‑analytic modeling. (manuscript.docx)
This study leveraged a large, granular ICU dataset, prespecified multivariable models, time‑to‑event methods across multiple horizons, evaluation of functional form with splines, and subgroup/interaction analyses. We also handled missingness using multiple imputation and performed complete‑case and alternative‑coding checks, with concordant estimates across specifications. An exploratory machine‑learning pipeline (with PR curves, decision‑curve analysis, and SHAP explanations) provided convergent evidence that BAR contributes prognostic information beyond traditional covariates, although these analyses were internally validated only. (manuscript.docx) (supplementary files.docx)
Several limitations merit emphasis. First, the retrospective, single‑center nature of MIMIC‑IV entails risks of residual confounding and misclassification of CS based on administrative codes. Second, we focused on baseline BAR within 24 hours; dynamic changes and time‑updated effects were not evaluated. Third, some clinically relevant variables (e.g., selected inflammatory markers or lipids) had >20% missingness and were excluded from primary models, potentially reducing model precision; although multiple imputation was applied for variables with ≤20% missingness, imputation cannot fully recover unobserved information. Fourth, treatment timing beyond the first 24 hours was not modeled, so we cannot exclude time‑dependent confounding or immortal‑time bias despite restricting covariates to baseline. Fifth, we did not quantify the incremental value of adding BAR to existing scores using reclassification or discrimination metrics tailored to survival data (e.g., ΔC‑index, IDI, NRI) nor present formal calibration assessments over time. Finally, the machine‑learning results relied on internal cross‑validation without external testing and should be considered supportive, not definitive. (manuscript.docx) (supplementary files.docx)
Prospective, multicenter validation is needed to test the transportability of BAR‑based risk stratification in contemporary CS care and to identify clinically actionable thresholds linked to absolute risk and net benefit. Studies should evaluate dynamic BAR trajectories, interactions with renal replacement and albumin administration, and the incremental value of BAR when added to SOFA/SAPS II or CS‑specific models using discrimination, calibration, and net reclassification approaches. Where feasible, robust‑bias analyses (e.g., E‑values) could quantify the strength of unmeasured confounding needed to explain away the observed associations (for example, an adjusted HR of ~1.80 for T3 vs T1 corresponds to an E‑value of ~3.0, with a lower‑bound E‑value ~1.8). (manuscript.docx)
BAR, an inexpensive ratio available within 24 hours of ICU admission, provides durable prognostic information for short‑ and longer‑term mortality in CS, with a near‑linear risk gradient and consistency across subgroups. BAR should be viewed as a complement to—not a replacement for—established scores and laboratory markers; external validation and decision‑analytic work are warranted before adopting specific thresholds in clinical pathways. (manuscript.docx)
结构与行文(强烈建议)
方法与稳健性(应补)
4) 增量价值:新增一段报告 BAR 加入 SOFA/SAPS II 后的 ΔC‑index、IDI、NRI,并绘制随时间的 calibration curve;如版面受限,可置于补充材料并在 Discussion 点出新增益与可信区间。(manuscript.docx)
5) 比例风险与函数形式:正文请简述 Schoenfeld 检验结果(通过/未见违背),并在图注或补充注明 RCS 结点位置与自由度;这两点是高分期刊常被审稿人追问的“可复核性”要素。(manuscript.docx)
6) 缺失与选择偏倚:在 Limitations 中补充“比较纳入 vs 排除(因缺失 BUN/Alb 等)患者的基线差异”的一句,并把对应表格放补充,回应“选择性纳入”的可能性。(supplementary files.docx)
7) 稳健性扩展:可在补充材料再给一组敏感性分析(例如 按 5 mg·g⁻¹ 递增、排除基线 AKI/CKD 或接受 CRRT 的人群),并在 Discussion 一句带过。(manuscript.docx)
机器学习(表述级别调整)
8) 将 ML 的定位从“验证 BAR 的中心地位”调整为“探索性、与回归结果一致的互证”,并明确“仅内部交叉验证,缺少外部测试”。删除夸大性措辞,保留 PR、DCA、SHAP 的“方向一致”结论即可。(manuscript.docx)
术语、单位与一致性(与全文联动)
9) 单位统一:将 “Per 1 unit increase” 统一写为 “Per 1 mg·g⁻¹ increase”;首次出现 BAR 时写全称与单位,并在图表题注同步。(manuscript.docx)
10) 缩写统一:全文与图注统一使用 IMV(invasive mechanical ventilation),删除“IVW”。在 Discussion 避免再次引入新缩写。(manuscript.docx)
11) 切点/分组:如保留 tertiles,请在方法或图注写明 三分位切点为队列内数据驱动,非临床阈值;Discussion 坚持此措辞,避免被审稿人认为“过度临床化”。(manuscript.docx)
限度与因果(把握语气)
12) 全文避免“predictor/causal”混用;在 Discussion 强调“prognostic marker/risk stratification”,明确“风险标志物不等于可干预靶点”,尤其是在提及 albumin 给药或 CRRT 时。(manuscript.docx)
可加的量化语句(选做但加分)
13) 在“Future directions”加入 E‑value 句(示例已写:T3 vs T1 HR≈1.80 → E‑value≈3.0;下限 1.26 → ≈1.8),显示对未测混杂的定量把握,常见于审稿意见的加分点。(manuscript.docx)
What this study adds(可在正文前加“Key Points”或“Clinical Perspective”框)
Limitations(两句版,便于压缩字数)
如果你愿意,我也可以把上述polished Discussion直接替换并在文档中全稿统一单位/缩写、同步图题表题;同时生成一页式**“作者对审稿人回复模板”**(涵盖稳健性、缺失、增量价值、比例风险与外部验证等常见问题),方便投稿后快速响应。 (manuscript.docx) (supplementary files.docx)
Study participant
The National Health and Nutrition Examination Survey (NHANES) was a comprehensive nationwide survey overseen by the Centers for Disease Control and Prevention (CDC) [13]. Conducted with approval from the Research Ethics Review Board of the National Center for Health Statistics (NCHS), the survey aimed to gather a wide range of information on demographic, socioeconomic, and health-related topics through interviews, physical examinations, and laboratory tests on biological samples. This detailed survey employs sophisticated sampling techniques to select participants, and oversampling specific populations to ensure a representative sample. Upon obtaining informed consent, demographic and questionnaire data were collected during household interviews conducted by trained technicians. Subsequent health screenings and biospecimen collection were conducted at mobile examination centers (MEC) following the household interviews. The meticulous data collection methods and procedures of the survey were elaborately outlined on the official website. Validation of all NHANES data was done by the NCHS, with updates being provided biennially on the website (https://wwwn.cdc.gov/nchs/nhanes/default.aspx.).
To clarify, our study utilized data from NHANES participants from 2003 to 2018 (n = 80,312), and this was secondary use of data. Exclusion criteria were applied to individuals under the age of 20(n = 35,522), those with missing PLR, NLR, MLR, and SII data(n = 8600), as well as those lacking mortality and CAD information(n = 3507). Our study’s data can be accessed in the supplementary materials.
Data collection and definitions
Interviews conducted at households aimed to collect information on participants’ demographic characteristics, and habits related to smoking and alcohol consumption, as well as their medical history, which included the use of prescribed medications. Physical measurements such as height, weight, waist circumference, and blood pressure were performed at the Mobile Examination Center (MEC). Before giving blood samples for analysis, participants were instructed to fast for 8 hours; these samples were subsequently sent to a partner laboratory for tests including liver and kidney function, complete blood count, blood glucose, and lipid profiles. As a result, we were able to obtain laboratory data for participants, including glycosylated hemoglobin type A1C(HbA1c), fasting blood glucose (FBG), total cholesterol (TC), triglycerides (TG), high-density lipoprotein cholesterol (HDL-C), and low-density lipoprotein cholesterol (LDL-C).
Specific mathematical formulas were used to carry out the calculations for PLR, NLR, MLR, and SII [14].
Smoking behavior was classified as non-smokers (fewer than 100 cigarettes smoked in the lifetime), former smokers (at least 100 cigarettes smoked in the lifetime and quit for more than one year), and current smokers (at least 100 cigarettes smoked in the lifetime and still smoking) [15]. Correspondingly, alcohol consumption was categorized into non-drinkers, those who consumed alcohol 1–5 times per month, 5–10 times per month, or more than 10 times per month [16].
Outcome assessment
The study’s primary outcome was the prevalence of CAD, with the secondary outcome for all-cause mortality and cardiovascular mortality. In this research, the determination of CAD diagnosis relied on the self-reported medical histories of the participants. Participants were inquired about whether they had ever been diagnosed with coronary heart disease, angina, or a heart attack by a professional physician. Those who answered positively to any of these conditions were classified as having CAD. The NCHS matched the survival status data of NHANES participants in the National Death Index (NDI) using Social Security numbers and birth dates. After processing by trained personnel, the survival data of NHANES participants were published on the official website, including survival status, follow-up time, cause of death, and other details. NHANES participants were assigned a unique identifier upon entering the study, which allowed the integration of mortality data with baseline examination data using this unique code. The follow-up period for participants begins from the date of participation and ends on December 31, 2019 (the most recent date when the NCHS published mortality data). If a participant dies during this period, the follow-up time will be calculated from the date of participation to the date of death. If a participant is still alive at the end of the follow-up period, the follow-up time will be calculated from the date of participation to the end of the follow-up period (December 31, 2019) [13].
Statistical analysis
Statistical analyses were conducted using R software version 4.3.0. Participants with a small amount of missing data (missing rate <10%) on poverty income ratio (PIR), body mass index (BMI), TG, FBG, HbA1C, HDL-C, LDL-C, smoking status, and alcohol consumption were imputed using the random forest method in the mice package in R.4.3.0. Sample weights were applied to reduce sampling bias, and following the NHANES analytical guidelines, new weights were recalculated by dividing the original 2-year cycle weights (WTMEC2YR) by 8 (the number of cycles). As PLR, NLR, MLR, and SII exhibited skewed distributions, log transformation was applied to normalize these variables for subsequent analyses. Notably, an increase of one unit in the log-transformed independent variable corresponded to a 2.72-fold increase in the original value. Additionally, these markers were categorized into quartiles to further assess their association with outcomes. Continuous variables following a normal distribution were presented as mean ± standard deviation (SD), categorical variables were summarized as percentages. For group comparisons, T-tests were employed for continuous variables, and chi-square tests were used for categorical variables. Before conducting the logistic regression analysis, we assessed multicollinearity among independent variables using the variance inflation factor (VIF). We calculated the VIF for all covariates and iteratively removed variables with VIF ≥ 5 to ensure model stability and interpretability. Ultimately, all covariates included in the final model had VIF < 5, thereby reducing the impact of multicollinearity on regression estimates [17]. The proportional hazards (PH) assumption was tested for all covariates to confirm the suitability of the Cox regression model.
Multifactorial logistic regression models were employed to evaluate the associations of PLR, NLR, MLR, and SII with CAD, presenting odds ratios (ORs) with corresponding 95% confidence intervals (CIs). Kaplan-Meier analysis was used to assess the cumulative incidence of all-cause death and cardiovascular death. To further investigate the association between PLR, NLR, MLR, SII, and all-cause along with cardiovascular mortality, multifactorial Cox regression models were applied, reporting hazard ratios (HRs) and associated 95% CIs. Model 1 was unadjusted, while Model 2 was adjusted for demographic and socioeconomic factors (gender, age, race, education, PIR, and BMI). Model 3 further incorporated clinical laboratory markers (HbA1c, TG, HDL-C, LDL-C, FBG) and lifestyle factors (smoking and alcohol consumption)), alongside the variables in Model 2. Restricted cubic spline (RCS) regression analysis was employed to examine the nonlinearity and dose-response relationship between PLR, NLR, MLR, SII, and CAD, all-cause mortality, cardiovascular mortality. Nonlinearity was evaluated through a likelihood ratio test, and when a significant nonlinear relationship was observed, a two-stage segmented regression analysis was applied to explore the predictor’s threshold effect on the outcome by identifying the inflection point. The discriminative ability for CAD of PLR, NLR, MLR, or SII were assessed using receiver operating characteristic (ROC) curves, with the area under the curve (AUC) and corresponding 95% CIs. To confirm the robustness of the results, sensitivity analyses were performed. Initially, the associations between PLR, NLR, MLR, SII, and CAD were reanalyzed after excluding participants with missing data. Subsequently, multiple imputations were conducted, generating 10 iterations to produce 10 complete datasets, in which the relationships between PLR, NLR, MLR, SII, and CAD were systematically reassessed. The 95% CIs for ORs, HRs, and AUC were inclusive of both endpoints within parentheses. In this study, A two-sided P-value < 0.05 was considered statistically significant.
参照上述期刊发表的文章的写作方式,帮我润色修改method部分
下面给出一版按 NEJM/JAMA/Circulation 写作习惯重排并润色的 Methods(可直接替换到稿件中);随后附上关键修改要点与待补信息清单,帮你把方法学更加严谨、与 NHANES 规范完全对齐。
We performed a cross‑sectional and prospective follow‑up analysis using publicly available data from the National Health and Nutrition Examination Survey (NHANES), a continuous, nationally representative survey conducted by the National Center for Health Statistics (NCHS), Centers for Disease Control and Prevention. NHANES employs a complex, multistage probability design with oversampling of specific subpopulations to improve the precision of estimates. All NHANES protocols were approved by the NCHS Research Ethics Review Board; written informed consent was obtained from all participants. This secondary analysis used de‑identified data and was considered exempt from additional institutional review. Detailed field operations, quality control procedures, and laboratory methods are described in the NHANES documentation.
We combined eight 2‑year cycles (2003–2018). Of 80,312 participants examined during these cycles, we excluded individuals <20 years of age (n=35,522), those missing all four inflammatory indices (PLR, NLR, MLR, SII) (n=8,600), and those lacking mortality linkage or coronary artery disease (CAD) information (n=3,507), yielding a final analytic sample of 32,683 adults. A flow diagram and detailed counts by exclusion criterion are provided in the Supplement. For participants with partial missingness in covariates, multiple imputation was used as described below.
Trained staff obtained demographic and questionnaire data during household interviews. Mobile Examination Centers (MECs) subsequently conducted standardized physical examinations (e.g., height, weight, waist circumference, and three blood pressure measurements) and venipuncture. For assays requiring fasting, participants followed NHANES protocols (≥8 hours). Laboratory testing included routine chemistry, complete blood count with differential, glucose and lipid profiles.
Inflammation‑related blood cell indices were computed from the same blood draw using standard definitions:
Lifestyle variables were defined a priori. Smoking status was categorized as never (<100 lifetime cigarettes), former (≥100 lifetime cigarettes and quit ≥1 year), or current (≥100 lifetime cigarettes and currently smoking). Alcohol consumption was categorized as none, 1–5 times/month, 5–10 times/month, or >10 times/month. Body‑mass index (BMI) was computed as weight (kg)/height (m)².
The primary cross‑sectional outcome was prevalent CAD, defined as a positive response to any of the following physician‑diagnosed conditions: coronary heart disease, angina pectoris, or myocardial infarction.
Secondary longitudinal outcomes were all‑cause mortality and cardiovascular mortality obtained through NCHS linkage to the National Death Index (NDI) using unique participant identifiers, with follow‑up through December 31, 2019. Time‑to‑event analyses used the interview/examination date as time zero; participants were censored at the end of follow‑up or date of death.
Potential confounders were selected a priori based on clinical relevance and prior literature. Demographic and socioeconomic factors included age, sex, race/ethnicity, education level, poverty‑income ratio (PIR), and BMI. Laboratory markers included fasting plasma glucose (FBG), HbA1c, total cholesterol (TC), triglycerides (TG), HDL‑C, and LDL‑C. Lifestyle variables included smoking and alcohol categories. Variable definitions and units, as well as coding details, are provided in the Supplement.
All analyses accounted for NHANES’ stratification (SDMVSTRA), clustering (SDMVPSU), and sampling weights using design‑based methods. For multi‑cycle analyses, 2‑year weights were divided by 8 to create 16‑year weights. We used the most restrictive weight applicable to the variables in a given model (e.g., fasting subsample weights for models including fasting labs; MEC examination weights when fasting labs were not included). Variance estimation used Taylor series linearization.
For variables with <10% missingness (e.g., PIR, BMI, TG, FBG, HbA1c, HDL‑C, LDL‑C, smoking, alcohol), we performed multiple imputation by chained equations (R mice, version 4.3.0), generating m=10 completed datasets. We used the random forest method for continuous and categorical variables, included the four indices (PLR/NLR/MLR/SII), outcomes, design variables (weights, strata, PSUs) as auxiliary inputs, and restricted predictors to pre‑exposure covariates to avoid look‑ahead bias. Estimates were combined using Rubin’s rules after fitting survey‑weighted models within each imputed dataset. Complete‑case analyses served as sensitivity checks.
All analyses were conducted in R 4.3.0 with the survey and survival packages. Because PLR, NLR, MLR, and SII were right‑skewed, we applied natural‑log transformation for continuous modeling; a 1‑unit increase on the log scale corresponds to an e‑fold (~2.72‑fold) increase in the original measure. Each biomarker was analyzed separately to avoid collinearity among indices and was also categorized into quartiles to assess non‑linearity and threshold patterns.
To assess robustness, we (1) re‑estimated associations in complete‑case samples; (2) repeated CAD analyses after excluding any participants with missingness in covariates; (3) compared continuous versus quartile‑based exposure coding; and (4) restricted mortality analyses to participants with fasting laboratory data using fasting subsample weights.
权重选择要与最严格子样本对齐:
四个炎症指数请分开建模为主分析:
清楚声明对数变换:
复杂抽样的实现要点:
PH 假设与 RCS 细节:
CAD 定义透明化:
ROC/AUC 需说明权重与区间估计方法:
报告样本量与事件数:
敏感性分析:
用语与格式统一:
如果你愿意,我可以把上述Methods 定稿版直接替换到你的文档中,并按清单补齐权重说明、变量代码表、RCS 结点与 PH 检验结果的图注与补充材料对应关系,确保与图表和统计代码一一对应。